[1] R.F. Ribeiro Junior, I.A. dos Santos Areias, M.M. Campos, C.E. Teixeira, L.E.B. da Silva, G.F. Gomes, Fault detection and diagnosis in electric motors using convolution neural network and short-time fourier transform, Journal of Vibration Engineering & Technologies, (2022) 1-12.
[2] M. Zakizadeh, A. Jamali, M. Rafeeyan, A. Chaibakhsh, Monitoring and Troubleshooting Alstom Locomotive Blowers using Vibration Analysis and Support Vector Machine, Amirkabir Journal of Science & Research (Mechanical Engineering), 54(8) (2022) 1833-1850 (in Persian).
[3] V.H. Farahani, Applying the envelope curve of vibration signals in condition monitoring and rolling bearings fault detection, Journal of Vibration & Sound, 2(3) (2013) 11-20 (in Persian).
[4] M. Shekarzadeh, M. Sadegh Alayy, Centrifugal pump bearings Fault diagnosis using the combination of independent component analysis methods and particle swarm optimization, Journal of New Applied and Computational Findings in Mechanical Systems, 3(1) (2023) 53-61 (in Persian).
[5] M. Kamari, G. Payeganeh, K.N. Khajavi, Implementation of Neuro– Fuzzy and Multi-Layer Perceptron System Intelligent Techniques for Main Fault Diagnosis of Rotating Machinery, Amirkabir Journal of Science & Research (Mechanical Engineering), 45(2) (2013) 105-118 (in Persian).
[6] M.A. Sattari, G.H. Roshani, R. Hanus, E. Nazemi, Applicability of time-domain feature extraction methods and artificial intelligence in two-phase flow meters based on gamma-ray absorption technique, Measurement, 168 (2021) 108474.
[7] X. Wang, D. Mao, X. Li, Bearing fault diagnosis based on vibro-acoustic data fusion and 1D-CNN network, Measurement, 173 (2021) 108518.
[8] R.-P. Nikula, K. Karioja, M. Pylvänäinen, K. Leiviskä, Automation of low-speed bearing fault diagnosis based on autocorrelation of time domain features, Mechanical Systems and Signal Processing, 138 (2020) 106572.
[9] A. Kafeel, S. Aziz, M. Awais, M.A. Khan, K. Afaq, S.A. Idris, H. Alshazly, S.M. Mostafa, An Expert System for Rotating Machine Fault Detection Using Vibration Signal Analysis, Sensors, 21(22) (2021) 7587.
[10] S. Nezamivand Chegini, Z. Karimi Rastehkenari, A. Bagheri, B. Ahmadi, Denoising vibration signals of rotating machines using probability density function, similarity measure and improved thresholding function, Amirkabir Journal of Science & Research (Mechanical Engineering), 53(Number 4 (Special Issue)) (2021) 2493-2512 (in Persian).
[11] S. Nezamivand Chegini, F. Zarif, A. Bagheri, A. Tavoli, Vibration signals denoise of rotating machines using experimental wavelet transform and common thresholding methods, Journal of Solid and Fluid Mechanics, 9(1) (2019) 111-124 (in Persian).
[12] V. Gupta, M. Mittal, Arrhythmia detection in ECG signal using fractional wavelet transform with principal component analysis, Journal of The Institution of Engineers (India): Series B, 101(5) (2020) 451-461.
[13] H. Ehya, A. Nysveen, T.N. Skreien, Performance evaluation of signal processing tools used for fault detection of hydrogenerators operating in noisy environments, IEEE Transactions on Industry Applications, 57(4) (2021) 3654-3665.
[14] Y. Gao, Y. Gao, B. Liu, Y. Jiang, Enhanced fault detection and exclusion based on Kalman filter with colored measurement noise and application to RTK, GPS Solutions, 25 (2021) 1-13.
[15] S. Mokhtari, K.K. Yen, A novel bilateral fuzzy adaptive unscented kalman filter and its implementation to nonlinear systems with additive noise, in: 2020 IEEE Industry Applications Society Annual Meeting, IEEE, 2020, pp. 1-6.
[16] P. Talwar, K. Cecil, Adaptive Filter and EMD Based De-Noising Method of ECG Signals: A Review, American Journal of Multidisciplinary Research & Development (AJMRD), 5(03) (2023) 09-14.
[17] F. Honarmand-Shazilehei, N. Pariz, M.B.N. Sistani, Sensor fault detection in a class of nonlinear systems using modal Kalman filter, ISA transactions, 107 (2020) 214-223.
[18] S. Cho, M. Choi, Z. Gao, T. Moan, Fault detection and diagnosis of a blade pitch system in a floating wind turbine based on Kalman filters and artificial neural networks, Renewable Energy, 169 (2021) 1-13.
[19] Y. Yao, J. Wang, M. Xie, Adaptive residual CNN-based fault detection and diagnosis system of small modular reactors, Applied Soft Computing, 114 (2022) 108064.
[20] M. Yakoubi, R. Hamdi, M.B. Salah, EEG enhancement using extended Kalman filter to train multi-layer perceptron, Biomedical Engineering: Applications, Basis and Communications, 31(01) (2019) 1950005.
[21] M. Singh, A.G. Shaik, Incipient fault detection in stator windings of an induction motor using stockwell transform and SVM, IEEE Transactions on Instrumentation and Measurement, 69(12) (2020) 9496-9504.
[22] S. Chatterjee, R.K. Gatla, P. Sinha, C. Jena, S. Kundu, B. Panda, L. Nanda, A. Pradhan, Fault detection of a Li-ion battery using SVM based machine learning and unscented Kalman filter, Materials Today: Proceedings, 74 (2023) 703-707.
[23] Z. Zemali, L. Cherroun, N. Hadroug, A. Hafaifa, A. Iratni, O.S. Alshammari, I. Colak, Robust intelligent fault diagnosis strategy using Kalman observers and neuro-fuzzy systems for a wind turbine benchmark, Renewable Energy, 205 (2023) 873-898.
[24] M. Khodarahmi, V. Maihami, A review on Kalman filter models, Archives of Computational Methods in Engineering, 30(1) (2023) 727-747.
[25] R.I. Alfian, A. Ma'arif, S. Sunardi, Noise reduction in the accelerometer and gyroscope sensor with the Kalman filter algorithm, Journal of Robotics and Control (JRC), 2(3) (2021) 180-189.
[26] F. Li, Z. Luo, K. Bai, M. Yin, D. Zou, W. Wang, X. Wang, W. Tan, Q. Sui, Z. Li, Noise shaping enhanced DMT signal transmission utilizing low-resolution DAC, IEEE Photonics Journal, 13(6) (2021) 1-7.
[27] S.K. Mishra, M. Gupta, D.K. Upadhyay, Active realization of fractional order Butterworth lowpass filter using DVCC, Journal of King Saud University-Engineering Sciences, 32(2) (2020) 158-165.
[28] I.M. Khairuddin, S.N. Sidek, A.P.A. Majeed, M.A.M. Razman, A.A. Puzi, H.M. Yusof, The classification of movement intention through machine learning models: the identification of significant time-domain EMG features, PeerJ Computer Science, 7 (2021) e379.
[29] K. Zhang, J. Chen, T. Zhang, Z. Zhou, A compact convolutional neural network augmented with multiscale feature extraction of acquired monitoring data for mechanical intelligent fault diagnosis, Journal of Manufacturing Systems, 55 (2020) 273-284.
[30] J.J. Saucedo-Dorantes, A.Y. Jaen-Cuellar, M. Delgado-Prieto, R. de Jesus Romero-Troncoso, R.A. Osornio-Rios, Condition monitoring strategy based on an optimized selection of high-dimensional set of hybrid features to diagnose and detect multiple and combined faults in an induction motor, Measurement, 178 (2021) 109404.
[31] A.F. Khalil, S. Rostam, Machine Learning-based Predictive Maintenance for Fault Detection in Rotating Machinery: A Case Study, Engineering, Technology & Applied Science Research, 14(2) (2024) 13181-13189.